dc.contributor.advisor |
Poovvancheri, Jiju |
|
dc.creator |
Kamra, Vivek |
|
dc.date.accessioned |
2022-10-04T13:04:28Z |
|
dc.date.available |
2022-10-04T13:04:28Z |
|
dc.date.issued |
2022-09-09 |
|
dc.identifier.uri |
http://library2.smu.ca/xmlui/handle/01/31065 |
|
dc.description |
1 online resource (vii, 72 pages) : illustrations (chiefly colour), charts (chiefly colour) |
|
dc.description |
Includes abstract. |
|
dc.description |
Includes bibliographical references (pages 65-72). |
|
dc.description.abstract |
Commercial buildings as well as residential houses represent core structures of any modern
day urban or semi-urban areas. Consequently, 3D models of urban buildings are of paramount
importance to a majority of digital urban applications such as city planning, 3D mapping and
navigation, video games and movies, among others. However, current studies suggest that
existing 3D modeling approaches often involve high computational cost and large storage volumes for processing the geometric details of the buildings. Therefore, it is essential to generate
concise digital representations of urban buildings from the 3D measurements or images, so that
the acquired information can be efficiently utilized for various urban applications. Such concise
representations, often referred to as “lightweight” models, strive to capture the details of the
physical objects with less computational storage. Furthermore, lightweight models consume
less bandwidth for online applications and facilitate accelerated visualizations. In this thesis,
we provide an assessment study on state-of-the-art data structures for storing lightweight urban
buildings. Then we propose a method to generate lightweight yet highly detailed 3D building
models from LiDAR scans. The lightweight modeling pipeline comprises the following stages:
mesh reconstruction, feature points detection and mesh decimation through gradient structure
tensors. The gradient of each vertex of the reconstructed mesh is obtained by estimating the
vertex confidence through eigen analysis and further encoded into a 3 X 3 structure tensor. We
analyze the eigenvalues of structure tensor representing gradient variations and use it to classify
vertices into various feature classes, e.g., edges, and corners. While decimating the mesh, fea ture points are preserved through a mean cost-based edge collapse operation. The experiments
on different building facade models show that our method is effective in generating simplified
models with a trade-off between simplification and accuracy. |
en_CA |
dc.description.provenance |
Submitted by Greg Hilliard (greg.hilliard@smu.ca) on 2022-10-04T13:04:28Z
No. of bitstreams: 1
Kamra_Vivek_MASTERS_2022.pdf: 13171493 bytes, checksum: 15c4a26b88b1e2a3f658a4abaa66feb1 (MD5) |
en |
dc.description.provenance |
Made available in DSpace on 2022-10-04T13:04:28Z (GMT). No. of bitstreams: 1
Kamra_Vivek_MASTERS_2022.pdf: 13171493 bytes, checksum: 15c4a26b88b1e2a3f658a4abaa66feb1 (MD5)
Previous issue date: 2022-09-09 |
en |
dc.language.iso |
en |
en_CA |
dc.publisher |
Halifax, N.S. : Saint Mary's University |
|
dc.subject.lcsh |
Three-dimensional modeling -- Mathematical models |
|
dc.subject.lcsh |
Data structures (Computer science) -- Mathematical models |
|
dc.subject.lcsh |
Optical radar |
|
dc.title |
Feature preserving decimation of urban meshes |
en_CA |
dc.type |
Text |
en_CA |
thesis.degree.name |
Master of Science in Applied Science |
|
thesis.degree.level |
Masters |
|
thesis.degree.discipline |
Mathematics and Computing Science |
|
thesis.degree.grantor |
Saint Mary's University (Halifax, N.S.) |
|